Machine Learning-Based Optimization of Channel and Power Allocation in 5G Systems

H, Ramya and T, Jaya (2024) Machine Learning-Based Optimization of Channel and Power Allocation in 5G Systems. In: 2024 Global Conference on Communications and Information Technologies (GCCIT), BANGALORE, India.

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Abstract

Optimizing resource allocation is becoming more crucial to fulfill the varied demands of 5G networks, such as minimal delay, connectivity to a vast number of devices, and fast data transmission speeds. Within the realm of 5G systems, a primary obstacle is the effective allocation of channels and power across a network environment that is characterized by its dynamism and diversity. In order to optimize power allocation and channel use in 5G networks, this paper presents a machine learning-based architecture. The primary aim of this study is to attain the most efficient network performance while reducing both interference and power consumption. The proposed approach integrates supervised learning and reinforcement learning algorithms to dynamically adapt resource allocation in real-time to the network's present condition and user demands. By using historical network data to predict the most efficient allocation methods, the model can adapt to different network loads and conditions at any given moment. By contrast to traditional heuristic methods, the simulation results show that the machine learning-based strategy greatly improves spectral efficiency, reduces power consumption, and increases the overall network throughput. Our study presents a scalable and adaptable approach to address the intricate resource allocation challenges in next-generation 5G networks. Our technology paves the path for 5G connections that are beyond the current capabilities in terms of sophistication and efficiency.

Item Type: Conference or Workshop Item (Paper)
Subjects: Computer Science Engineering > Machine Learning
Domains: Electronics and Communication Engineering
Depositing User: Mr IR Admin
Date Deposited: 29 Aug 2025 04:31
Last Modified: 29 Aug 2025 04:31
URI: https://ir.vistas.ac.in/id/eprint/10895

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